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A hybrid clustering method for ROI delineation in small-animal dynamic PET images : application to the automatic estimation of FDG input functions

机译:小动物动态P​​ET图像中ROI描绘的混合聚类方法:在FDG输入函数自动估计中的应用

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摘要

Tracer kinetic modeling with dynamic positron emission tomography (PET) requires a plasma time-activity curve (PTAC) as an input function. Several image-derived input function (IDIF) methods that rely on drawing the region of interest (ROI) in large vascular structures have been proposed to overcome the problems caused by the invasive approach for obtaining the PTAC, especially for small-animal studies. However, the manual placement of ROIs for estimating IDIF is subjective and labor-intensive, making it an undesirable and unreliable process. In this paper, we propose a novel hybrid clustering method (HCM) that objectively delineates ROIs in dynamic PET images for the estimation of IDIFs, and demonstrate its application to the mouse PET studies acquired with [ 18F]Fluoro-2-deoxy-2-D-glucose (FDG). We begin our HCM using k-means clustering for background removal. We then model the time-activity curves using polynomial regression mixture models in curve clustering for heart structure detection. The hierarchical clustering is finally applied for ROI refinements. The HCM achieved accurate ROI delineation in both computer simulations and experimental mouse studies. In the mouse studies, the predicted IDIF had a high correlation with the gold standard, the PTAC derived from the invasive blood samples. The results indicate that the proposed HCM has a great potential in ROI delineation for automatic estimation of IDIF in dynamic FDG-PET studies.
机译:使用动态正电子发射断层扫描(PET)进行示踪剂动力学建模需要等离子时间-活动曲线(PTAC)作为输入函数。已经提出了几种依靠在大血管结构中绘制感兴趣区域(ROI)的图像衍生输入函数(IDIF)方法来克服由侵入性方法获得PTAC所引起的问题,尤其是对于小动物研究。但是,用于估计IDIF的ROI的手动放置是主观的和劳动密集型的,这使其成为不希望的且不可靠的过程。在本文中,我们提出了一种新颖的混合聚类方法(HCM),该方法客观地描述了动态PET图像中的ROI,以估计IDIF,并证明了其在通过[18F] Fluoro-2-deoxy-2-f获得的小鼠PET研究中的应用D-葡萄糖(FDG)。我们开始使用k均值聚类进行背景去除的HCM。然后,我们在曲线聚类中使用多项式回归混合模型对时间活动曲线进行建模,以进行心脏结构检测。最终将层次聚类应用于ROI细化。 HCM在计算机仿真和实验小鼠研究中均实现了准确的ROI描绘。在小鼠研究中,预测的IDIF与金标准(源自侵入性血液样本的PTAC)高度相关。结果表明,提出的HCM在动态FDG-PET研究中IDIF的自动估计方面具有很大的ROI描绘潜力。

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